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A Spatial Analysis of the Atlanta BeltLine’s Effect on Residential Real Estate. Ryan Davis The Pennsylvania State University May 6, 2014. Outline. Background: What is the Atlanta BeltLine? Objectives Data sources Methods Anticipated Results Proposed Timeline References
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A Spatial Analysis of the Atlanta BeltLine’s Effect on Residential Real Estate Ryan Davis The Pennsylvania State University May 6,2014
Outline • Background: What is the Atlanta BeltLine? • Objectives • Data sources • Methods • Anticipated Results • Proposed Timeline • References • Acknowledgements& Questions The Atlanta BeltLine’s Eastside Trail
What is the ? • Large-scale urban development project • 22-mile ring of paved trails, green space, light rail and public art built along defunct railroad tracks surrounding the city’s core business district • Approximately 3,000 acres of underutilized land set for development • Connects 45 neighborhoods • Expected completion - 2030 BeltLine corridor overlayed on Google Maps. Image retrieved fromhttp://beltline.org/explore/maps/overview-maps/
Funding the Project • City established 6,500-acre Tax Allocation District (TAD) in 2005. • 8% of city’s land area • All property tax revenues greater than post-2005 level finance bonds.
Project Objectives The goals of this project are to: • Quantify the impact of the development of the BeltLine on nearby residential property values • Compare the relative impact of BeltLine development on residential property values in different regions and neighborhoods of Atlanta • Create a framework to continually assess effects of BeltLine development at a local level
Data Sources • Real estate listing data • Atlanta BeltLine shapefiles • United States Census Bureau TIGER files
Real Estate Listing Data • Georgia Multiple Listing Service (GAMLS) • SQL database • A multiple listing service: • membership-based service for real estate brokers and agents • share listing information that will ultimately result in a transaction for clients respectively selling and purchasing property. • Listing information is input by real estate agents and their assistants. • Common source for: • real estate appraisals • periodic reports published by the National Association of Realtors
Real Estate Listing Data - cont. • Transactions recorded in an MLS do not represent all real estate transactions in a market. • Each listing record represents a marketing experience for a residential property • Transactions not occurring on open market are omitted. • Includes information not available from tax assessor data. • Variety of attributes available for each listing record • Sales price • Type of residence (detached or attached) • Building area (square footage) • Lot size (acreage) • Date of sale • Latitude and longitude coordinates • Number of bedrooms and bathrooms • Year built • Time on the market
Real Estate Listing Data - cont. Available sales records span the history of the Atlanta BeltLine. Summary table of data - Sold residential listings with an Atlanta address; DeKalb & Fulton Counties
City of Atlanta GIS Data • BeltLine polygon shapefiles • Corridor • Tax Allocation District (TAD) • Planning Area • Overlay district • Data retrieved from http://gis.atlantaga.gov/apps/gislayers/download/
City of Atlanta GIS Data • Polygon shapefiles • City limits • Regional study groups • Neighborhoods • Data retrieved from http://gis.atlantaga.gov/apps/gislayers/download/ The five study regions and their respective neighborhoods that intersect the BeltLine corridor are shown.
United States Census Bureau • Block groups • Decennial Census (2000, 2010) • Total number of housing units • Occupancy, vacancy rates • American Community Survey • Median income • Employment status • Commute time to/from work The BeltLine Corridor (red) is overlaid on US Census Block Groups for Fulton and DeKalb Counties.
MethodsHedonic Pricing • Hedonic pricing models decompose a sales price into its individual components. • Traditionally, residential real estate studies have relied upon hedonic pricing models to help explain and predict the mechanics underlying property values. • Basic formula: P = f(S,E,L) • P = price • S = structural characteristics • E = environmental characteristics • L = location
MethodsMultiple Regression Analysis • Commonly used by tax assessors and appraisers for real estate valuation • Breaks down the dependent variable, sales price, into explanatory independent variables Yi = β0 + β1X1i + β2X2i + n … + βnXni + εi • Yi = sales price • X = individual aspects of property • β parameters (coefficients) indicate magnitude of X • εi= error
MethodsCriticism of linear pricing regression • Fail to compensate properly for two key characteristics of housing markets: • spatial dependence • spatial heterogeneity • May result in biased coefficients • submarket segmentation • continuous geographic distribution of real estate values
MethodsGeographically Weighted Regression • GWR performs individual regressions at each data sample point in the spirit of Tobler’s first law of geography. • Yi(u) = β0(u) + β1(u)X1i+ β2(u)X2i+ n … + βn(u)Xni+ εi • Yi = sales price • X = individual aspects of property • β parameters (coefficients) indicate magnitude of X • εi= error • u = location (Charlton & Fotheringham, 2009)
MethodsGeographically Weighted Regression • Research indicates GWR provides superior explanation in housing markets than traditional hedonic models (Bitter et al., 2007). • The goal is then to measure coefficients associated with proximity to BeltLine.
MethodsUtilizing GWR • Perform OLS regression to establish global coefficients. • Determine validity and explanatory power of data attributes for inclusion in models. • Run test GWR models to compare coefficients with the goal of improved R2 value for entire study area. • Apply validated global GWR model to five local study regions. • Determine BeltLine-proximity coefficients by region.
MethodsPotential software packages • Esri ArcMap - Spatial Statistics extension • R statistical software - spgwr, gwrr packages • GWR 4.0
Anticipated Results • Study area will display vast spatial heterogeneity around the BeltLine development. • Properties closer to the BeltLine will generally display a price premium when compared to similar properties farther away. • BeltLine development will display different levels of regional impacts.
Project Timeline • May - June 2014 Data QA/QC • June - July 2014 Fine tune modeling • June 30, 2014 Call for Presentations due • (GA Geospatial Conference) • August – Sept 2014 Complete analysis and prepare full presentation of findings • October 6-8, 2014 Georgia Geospatial Conference, Athens GA • http://www.geospatialconferencega.com/ • December 2014 Anticipated graduation
Partial List of References Atlanta BeltLine. (2013). 2030 Strategic Implementation Program: Final Report. Retrieved from http://beltline.org/progress/planning/implementation-plan/ Atlanta BeltLine TAD. (n.d.) beltline.org. Retrieved on March 17, 2014 from http://beltline.org/about/the-atlanta-beltline-project/funding/atlanta-beltline-tad/ Benjamin, J.D., Guttery, R.S., & Sirmans, C.F. (2004). Mass appraisal: An introduction to multiple regression analysis for real estate valuation. Journal of Real Estate Practice and Education, 7(1), 65-77. Bitter, C., Mulligan, G.F., & Dall’erba, S. (2007). Incorporating spatial variation in housing attribute prices: A comparison of geographically weighted regression and the spatial expansion method. Journal of Geographical Systems, 9, 7-27. Brunsdon, C.A., Fotheringham, A.S., & Charlton, M.E. (1996). Geographically weighted regression: A method for exploring spatial nonstationarity. Geographical Analysis, 28(4), 281-298. Charlton, M. & Fotheringham, A.S. (2009). Geographically Weighted Regression [White Paper]. Retrieved from http://gwr.nuim.ie/downloads/GWR_WhitePaper.pdf. City of Atlanta, GA. (n.d.). City of Atlanta, GA: The Atlanta BeltLine. Retrieved on 4/9/2014 from http://www.atlantaga.gov/index.aspx?page=383. Du, H. & Mulley, C. (2012). Understanding spatial variations in the impact of accessibility on land value using geographically weighted regression. The Journal of Transport and Land Use, 5(2), 46-59. doi: 10.5198/jtlu.v5i2.225. Georgia Multiple Listing Service. (2014). [Data set]. Gravel, R. A. (1999). Belt Line - Atlanta: Design of Infrastructure as a Reflection of Public Policy. (Master’s Thesis). Retrieved from http://beltlineorg.wpengine.netdna-cdn.com/wp-content/uploads/2012/04/Ryan-Gravel-Thesis-1999.pdf Immergluck, D. (2009). Large redevelopment initiatives, housing values and gentrification: The case of the Atlanta Beltline. Urban Studies, 46(8), 1723-1745. doi: 10.1177/0042098009105500. Retrieved from http://usj.sagepub.com/content/46/8/1723. Long, F., Paez, A., & Farber, S. (2007). “Spatial effects in hedonic price estimation: A case study in the city of Toronto.” Center for Spatial Analysis - Working Paper Series. Retrieved from http://sciwebserver.science.mcmaster.ca/cspa/papers.html. O'Sullivan, D., & Unwin, D. J. (2010). Geographic Information Analysis. (2 ed.). Hoboken, New Jersey: John Wiley & Sons, Inc. Yan, S., Delmelle, E., & Duncan, M. (2012). The impact of a new light rail system on single-family property values in Charlotte, North Carolina. The Journal of Transport and Land Use, 5(2), 60-67. doi: 10.5198/jtlu.v5i2.261.
Questions? Acknowledgements: Dr. Douglas Miller, Advisor beltline.org www.georgiamls.com